Existing intelligent driving technology often has a problem in balancing smooth driving and fast obstacle avoidance, especially when the vehicle is in a non-structural environment, and is prone to instability in emergency situations. Therefore, this study proposed an autonomous obstacle avoidance control strategy that can effectively guarantee vehicle stability based on Attention-long short-term memory (Attention-LSTM) deep learning model with the idea of humanoid driving. First, we designed the autonomous obstacle avoidance control rules to guarantee the safety of unmanned vehicles. Second, we improved the autonomous obstacle avoidance control strategy combined with the stability analysis of special vehicles. Third, we constructed a deep learning obstacle avoidance control through experiments, and the average relative error of this system was 15%. Finally, the stability and accuracy of this control strategy were verified numerically and experimentally. The method proposed in this study can ensure that the unmanned vehicle can successfully avoid the obstacles while driving smoothly.
翻译:现有智能驾驶技术在平衡平稳驾驶和快速避免障碍方面往往存在问题,特别是在车辆处于非结构环境的情况下,而且容易在紧急情况下出现不稳定,因此,本研究报告提出了避免障碍自主控制战略,这一战略可有效保障车辆的稳定性,其依据是关注短期内存(注意-LSTM)的深层学习模式,其理念是人造驾驶。首先,我们设计了避免障碍自主控制规则,以保障无人驾驶车辆的安全。第二,我们改进了避免障碍自主控制战略,同时对特殊车辆进行了稳定分析。第三,我们通过实验建立了避免障碍的深层学习障碍控制,而该系统的平均相对错误为15%。最后,对控制战略的稳定性和准确性进行了数字和实验性核查。本研究报告提出的方法可以确保无人驾驶车辆在顺利驾驶时能够成功地避免障碍。